loading...
 This Article 
   
 Share 
   
 Bibliographic References 
   
 Add to: 
 
Digg
Furl
Spurl
Blink
Simpy
Google
Del.icio.us
Y!MyWeb
 
 Search 
   
17th IEEE International Conference on Tools with Artificial Intelligence (ICTAI'05)
Latent Process Model for Manifold Learning
Hong Kong, China
November 14-November 16
ISBN: 0-7695-2488-5
Gang Wang, Hong Kong University of Science and Technology
Weifeng Su, Hong Kong University of Science and Technology
Xiangye Xiao, Hong Kong University of Science and Technology
Lochovsky Frederick, Hong Kong University of Science and Technology
In this paper, we propose a novel stochastic framework for unsupervised manifold learning. The latent variables are introduced, and the latent processes are assumed to characterize the pairwise relations of points over a high dimensional and a low dimensional space. The elements in the embedding space are obtained by minimizing the divergence between the latent processes over the two spaces. Different priors of the latent variables, such as Gaussian and multinominal, are examined. The Kullback-Leibler divergence and the Bhattachartyya distance are investigated. The latent process model incorporates some existing embedding methods and gives a clear view on the properties of each method. The embedding ability of this latent process model is illustrated on a collection of bitmaps of handwritten digits and on a set of synthetic data.
Citation:
Gang Wang, Weifeng Su, Xiangye Xiao, Lochovsky Frederick, "Latent Process Model for Manifold Learning," ictai, pp.382-386, 17th IEEE International Conference on Tools with Artificial Intelligence (ICTAI'05), 2005
Usage of this product signifies your acceptance of the Terms of Use.